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Informational connectivity: identifying synchronized discriminability of multi-voxel patterns across the brain

机译:信息连通性:识别大脑中多个体素模式的同步可分辨性

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摘要

The fluctuations in a brain region's activation levels over a functional magnetic resonance imaging (fMRI) time-course are used in functional connectivity (FC) to identify networks with synchronous responses. It is increasingly recognized that multi-voxel activity patterns contain information that cannot be extracted from univariate activation levels. Here we present a novel analysis method that quantifies regions' synchrony in multi-voxel activity pattern discriminability, rather than univariate activation, across a timeseries. We introduce a measure of multi-voxel pattern discriminability at each time-point, which is then used to identify regions that share synchronous time-courses of condition-specific multi-voxel information. This method has the sensitivity and access to distributed information that multi-voxel pattern analysis enjoys, allowing it to be applied to data from conditions not separable by univariate responses. We demonstrate this by analyzing data collected while people viewed four different types of man-made objects (typically not separable by univariate analyses) using both FC and informational connectivity (IC) methods. IC reveals networks of object-processing regions that are not detectable using FC. The IC results support prior findings and hypotheses about object processing. This new method allows investigators to ask questions that are not addressable through typical FC, just as multi-voxel pattern analysis (MVPA) has added new research avenues to those addressable with the general linear model (GLM).
机译:在功能性磁共振成像(fMRI)中使用功能性磁共振成像(fMRI)时程的大脑区域激活水平的波动来识别具有同步响应的网络。人们越来越认识到,多体素活动模式包含无法从单变量激活水平中提取的信息。在这里,我们提出了一种新颖的分析方法,该方法可以量化整个时间序列中多体素活动模式可分辨性而不是单变量激活中的区域同步性。我们介绍了在每个时间点的多体素模式可分辨性的度量,然后用于识别共享特定条件的多体素信息的同步时间过程的区域。这种方法具有灵敏度,并可以访问多体素模式分析所享有的分布式信息,从而可以将其应用于无法通过单变量响应分离的条件下的数据。我们通过使用FC和信息连接(IC)方法分析人们查看四种不同类型的人造对象(通常无法通过单变量分析将其分离)时收集的数据来证明这一点。 IC揭示了使用FC无法检测到的对象处理区域网络。 IC结果支持有关对象处理的先前发现和假设。这种新方法使研究人员可以提出无法通过典型FC解决的问题,就像多体素模式分析(MVPA)为使用通用线性模型(GLM)解决的问题增加了新的研究途径一样。

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